diff --git a/torchvision/prototype/datasets/_builtin/README.md b/torchvision/prototype/datasets/_builtin/README.md index c20c0241fac..05d61c6870e 100644 --- a/torchvision/prototype/datasets/_builtin/README.md +++ b/torchvision/prototype/datasets/_builtin/README.md @@ -12,51 +12,66 @@ Finally, `from torchvision.prototype import datasets` is implied below. Before we start with the actual implementation, you should create a module in `torchvision/prototype/datasets/_builtin` that hints at the dataset you are going to add. For example `caltech.py` for `caltech101` and `caltech256`. In that -module create a class that inherits from `datasets.utils.Dataset` and overwrites at minimum three methods that will be -discussed in detail below: +module create a class that inherits from `datasets.utils.Dataset` and overwrites four methods that will be discussed in +detail below: ```python -from typing import Any, Dict, List +import pathlib +from typing import Any, BinaryIO, Dict, List, Tuple, Union from torchdata.datapipes.iter import IterDataPipe -from torchvision.prototype.datasets.utils import Dataset, DatasetInfo, DatasetConfig, OnlineResource +from torchvision.prototype.datasets.utils import Dataset, OnlineResource +from .._api import register_dataset, register_info + +NAME = "my-dataset" + +@register_info(NAME) +def _info() -> Dict[str, Any]: + return dict( + ... + ) + +@register_dataset(NAME) class MyDataset(Dataset): - def _make_info(self) -> DatasetInfo: + def __init__(self, root: Union[str, pathlib.Path], *, ..., skip_integrity_check: bool = False) -> None: ... + super().__init__(root, skip_integrity_check=skip_integrity_check) - def resources(self, config: DatasetConfig) -> List[OnlineResource]: + def _resources(self) -> List[OnlineResource]: ... - def _make_datapipe( - self, resource_dps: List[IterDataPipe], *, config: DatasetConfig, - ) -> IterDataPipe[Dict[str, Any]]: + def _datapipe(self, resource_dps: List[IterDataPipe[Tuple[str, BinaryIO]]]) -> IterDataPipe[Dict[str, Any]]: + ... + + def __len__(self) -> int: ... ``` -### `_make_info(self)` +In addition to the dataset, you also need to implement an `_info()` function that takes no arguments and returns a +dictionary of static information. The most common use case is to provide human-readable categories. +[See below](#how-do-i-handle-a-dataset-that-defines-many-categories) how to handle cases with many categories. -The `DatasetInfo` carries static information about the dataset. There are two required fields: +Finally, both the dataset class and the info function need to be registered on the API with the respective decorators. +With that they are loadable through `datasets.load("my-dataset")` and `datasets.info("my-dataset")`, respectively. -- `name`: Name of the dataset. This will be used to load the dataset with `datasets.load(name)`. Should only contain - lowercase characters. +### `__init__(self, root, *, ..., skip_integrity_check = False)` -There are more optional parameters that can be passed: +Constructor of the dataset that will be called when the dataset is instantiated. In addition to the parameters of the +base class, it can take arbitrary keyword-only parameters with defaults. The checking of these parameters as well as +setting them as instance attributes has to happen before the call of `super().__init__(...)`, because that will invoke +the other methods, which possibly depend on the parameters. All instance attributes must be private, i.e. prefixed with +an underscore. -- `dependencies`: Collection of third-party dependencies that are needed to load the dataset, e.g. `("scipy",)`. Their - availability will be automatically checked if a user tries to load the dataset. Within the implementation, import - these packages lazily to avoid missing dependencies at import time. -- `categories`: Sequence of human-readable category names for each label. The index of each category has to match the - corresponding label returned in the dataset samples. - [See below](#how-do-i-handle-a-dataset-that-defines-many-categories) how to handle cases with many categories. -- `valid_options`: Configures valid options that can be passed to the dataset. It should be `Dict[str, Sequence[Any]]`. - The options are accessible through the `config` namespace in the other two functions. First value of the sequence is - taken as default if the user passes no option to `torchvision.prototype.datasets.load()`. +If the implementation of the dataset depends on third-party packages, pass them as a collection of strings to the base +class constructor, e.g. `super().__init__(..., dependencies=("scipy",))`. Their availability will be automatically +checked if a user tries to load the dataset. Within the implementation of the dataset, import these packages lazily to +avoid missing dependencies at import time. -## `resources(self, config)` +### `_resources(self)` -Returns `List[datasets.utils.OnlineResource]` of all the files that need to be present locally before the dataset with a -specific `config` can be build. The download will happen automatically. +Returns `List[datasets.utils.OnlineResource]` of all the files that need to be present locally before the dataset can be +build. The download will happen automatically. Currently, the following `OnlineResource`'s are supported: @@ -81,7 +96,7 @@ def sha256sum(path, chunk_size=1024 * 1024): print(checksum.hexdigest()) ``` -### `_make_datapipe(resource_dps, *, config)` +### `_datapipe(self, resource_dps)` This method is the heart of the dataset, where we transform the raw data into a usable form. A major difference compared to the current stable datasets is that everything is performed through `IterDataPipe`'s. From the perspective of someone @@ -99,60 +114,112 @@ All of them can be imported `from torchdata.datapipes.iter`. In addition, use `f needs extra arguments. If the provided `IterDataPipe`'s are not sufficient for the use case, it is also not complicated to add one. See the MNIST or CelebA datasets for example. -`make_datapipe()` receives `resource_dps`, which is a list of datapipes that has a 1-to-1 correspondence with the return -value of `resources()`. In case of archives with regular suffixes (`.tar`, `.zip`, ...), the datapipe will contain -tuples comprised of the path and the handle for every file in the archive. Otherwise the datapipe will only contain one +`_datapipe()` receives `resource_dps`, which is a list of datapipes that has a 1-to-1 correspondence with the return +value of `_resources()`. In case of archives with regular suffixes (`.tar`, `.zip`, ...), the datapipe will contain +tuples comprised of the path and the handle for every file in the archive. Otherwise, the datapipe will only contain one of such tuples for the file specified by the resource. Since the datapipes are iterable in nature, some datapipes feature an in-memory buffer, e.g. `IterKeyZipper` and -`Grouper`. There are two issues with that: 1. If not used carefully, this can easily overflow the host memory, since -most datasets will not fit in completely. 2. This can lead to unnecessarily long warm-up times when data is buffered -that is only needed at runtime. +`Grouper`. There are two issues with that: + +1. If not used carefully, this can easily overflow the host memory, since most datasets will not fit in completely. +2. This can lead to unnecessarily long warm-up times when data is buffered that is only needed at runtime. Thus, all buffered datapipes should be used as early as possible, e.g. zipping two datapipes of file handles rather than trying to zip already loaded images. There are two special datapipes that are not used through their class, but through the functions `hint_shuffling` and -`hint_sharding`. As the name implies they only hint part in the datapipe graph where shuffling and sharding should take -place, but are no-ops by default. They can be imported from `torchvision.prototype.datasets.utils._internal` and are -required in each dataset. `hint_shuffling` has to be placed before `hint_sharding`. +`hint_sharding`. As the name implies they only hint at a location in the datapipe graph where shuffling and sharding +should take place, but are no-ops by default. They can be imported from `torchvision.prototype.datasets.utils._internal` +and are required in each dataset. `hint_shuffling` has to be placed before `hint_sharding`. Finally, each item in the final datapipe should be a dictionary with `str` keys. There is no standardization of the names (yet!). +### `__len__` + +This returns an integer denoting the number of samples that can be drawn from the dataset. Please use +[underscores](https://peps.python.org/pep-0515/) after every three digits starting from the right to enhance the +readability. For example, `1_281_167` vs. `1281167`. + +If there are only two different numbers, a simple `if` / `else` is fine: + +```py +def __len__(self): + return 12_345 if self._split == "train" else 6_789 +``` + +If there are more options, using a dictionary usually is the most readable option: + +```py +def __len__(self): + return { + "train": 3, + "val": 2, + "test": 1, + }[self._split] +``` + +If the number of samples depends on more than one parameter, you can use tuples as dictionary keys: + +```py +def __len__(self): + return { + ("train", "bar"): 4, + ("train", "baz"): 3, + ("test", "bar"): 2, + ("test", "baz"): 1, + }[(self._split, self._foo)] +``` + +The length of the datapipe is only an annotation for subsequent processing of the datapipe and not needed during the +development process. Since it is an `@abstractmethod` you still have to implement it from the start. The canonical way +is to define a dummy method like + +```py +def __len__(self): + return 1 +``` + +and only fill it with the correct data if the implementation is otherwise finished. +[See below](#how-do-i-compute-the-number-of-samples) for a possible way to compute the number of samples. + ## Tests To test the dataset implementation, you usually don't need to add any tests, but need to provide a mock-up of the data. This mock-up should resemble the original data as close as necessary, while containing only few examples. To do this, add a new function in [`test/builtin_dataset_mocks.py`](../../../../test/builtin_dataset_mocks.py) with the -same name as you have defined in `_make_config()` (if the name includes hyphens `-`, replace them with underscores `_`) -and decorate it with `@register_mock`: +same name as you have used in `@register_info` and `@register_dataset`. This function is called "mock data function". +Decorate it with `@register_mock(configs=[dict(...), ...])`. Each dictionary denotes one configuration that the dataset +will be loaded with, e.g. `datasets.load("my-dataset", **config)`. For the most common case of a product of all options, +you can use the `combinations_grid()` helper function, e.g. +`configs=combinations_grid(split=("train", "test"), foo=("bar", "baz"))`. + +In case the name of the dataset includes hyphens `-`, replace them with underscores `_` in the function name and pass +the `name` parameter to `@register_mock` ```py # this is defined in torchvision/prototype/datasets/_builtin +@register_dataset("my-dataset") class MyDataset(Dataset): - def _make_info(self) -> DatasetInfo: - return DatasetInfo( - "my-dataset", - ... - ) - -@register_mock -def my_dataset(info, root, config): + ... + +@register_mock(name="my-dataset", configs=...) +def my_dataset(root, config): ... ``` -The function receives three arguments: +The mock data function receives two arguments: -- `info`: The return value of `_make_info()`. - `root`: A [`pathlib.Path`](https://docs.python.org/3/library/pathlib.html#pathlib.Path) of a folder, in which the data needs to be placed. -- `config`: The configuration to generate the data for. This is the same value that `_make_datapipe()` receives. +- `config`: The configuration to generate the data for. This is one of the dictionaries defined in + `@register_mock(configs=...)` The function should generate all files that are needed for the current `config`. Each file should be complete, e.g. if -the dataset only has a single archive that contains multiple splits, you need to generate all regardless of the current -`config`. Although this seems odd at first, this is important. Consider the following original data setup: +the dataset only has a single archive that contains multiple splits, you need to generate the full archive regardless of +the current `config`. Although this seems odd at first, this is important. Consider the following original data setup: ``` root @@ -167,9 +234,8 @@ root For map-style datasets (like the one currently in `torchvision.datasets`), one explicitly selects the files they want to load. For example, something like `(root / split).iterdir()` works fine even if only the specific split folder is present. With iterable-style datasets though, we get something like `root.iterdir()` from `resource_dps` in -`_make_datapipe()` and need to manually `Filter` it to only keep the files we want. If we would only generate the data -for the current `config`, the test would also pass if the dataset is missing the filtering, but would fail on the real -data. +`_datapipe()` and need to manually `Filter` it to only keep the files we want. If we would only generate the data for +the current `config`, the test would also pass if the dataset is missing the filtering, but would fail on the real data. For datasets that are ported from the old API, we already have some mock data in [`test/test_datasets.py`](../../../../test/test_datasets.py). You can find the test case corresponding test case there @@ -178,8 +244,6 @@ and have a look at the `inject_fake_data` function. There are a few differences - `tmp_dir` corresponds to `root`, but is a `str` rather than a [`pathlib.Path`](https://docs.python.org/3/library/pathlib.html#pathlib.Path). Thus, you often see something like `folder = pathlib.Path(tmp_dir)`. This is not needed. -- Although both parameters are called `config`, the value in the new tests is a namespace. Thus, please use `config.foo` - over `config["foo"]` to enhance readability. - The data generated by `inject_fake_data` was supposed to be in an extracted state. This is no longer the case for the new mock-ups. Thus, you need to use helper functions like `make_zip` or `make_tar` to actually generate the files specified in the dataset. @@ -196,9 +260,9 @@ Finally, you can run the tests with `pytest test/test_prototype_builtin_datasets ### How do I start? -Get the skeleton of your dataset class ready with all 3 methods. For `_make_datapipe()`, you can just do +Get the skeleton of your dataset class ready with all 4 methods. For `_datapipe()`, you can just do `return resources_dp[0]` to get started. Then import the dataset class in -`torchvision/prototype/datasets/_builtin/__init__.py`: this will automatically register the dataset and it will be +`torchvision/prototype/datasets/_builtin/__init__.py`: this will automatically register the dataset, and it will be instantiable via `datasets.load("mydataset")`. On a separate script, try something like ```py @@ -206,7 +270,7 @@ from torchvision.prototype import datasets dataset = datasets.load("mydataset") for sample in dataset: - print(sample) # this is the content of an item in datapipe returned by _make_datapipe() + print(sample) # this is the content of an item in datapipe returned by _datapipe() break # Or you can also inspect the sample in a debugger ``` @@ -217,15 +281,24 @@ datapipes and return the appropriate dictionary format. ### How do I handle a dataset that defines many categories? -As a rule of thumb, `datasets.utils.DatasetInfo(..., categories=)` should only be set directly for ten categories or -fewer. If more categories are needed, you can add a `$NAME.categories` file to the `_builtin` folder in which each line -specifies a category. If `$NAME` matches the name of the dataset (which it definitively should!) it will be -automatically loaded if `categories=` is not set. +As a rule of thumb, `categories` in the info dictionary should only be set manually for ten categories or fewer. If more +categories are needed, you can add a `$NAME.categories` file to the `_builtin` folder in which each line specifies a +category. To load such a file, use the `from torchvision.prototype.datasets.utils._internal import read_categories_file` +function and pass it `$NAME`. In case the categories can be generated from the dataset files, e.g. the dataset follows an image folder approach where -each folder denotes the name of the category, the dataset can overwrite the `_generate_categories` method. It gets -passed the `root` path to the resources, but they have to be manually loaded, e.g. -`self.resources(config)[0].load(root)`. The method should return a sequence of strings representing the category names. +each folder denotes the name of the category, the dataset can overwrite the `_generate_categories` method. The method +should return a sequence of strings representing the category names. In the method body, you'll have to manually load +the resources, e.g. + +```py +resources = self._resources() +dp = resources[0].load(self._root) +``` + +Note that it is not necessary here to keep a datapipe until the final step. Stick with datapipes as long as it makes +sense and afterwards materialize the data with `next(iter(dp))` or `list(dp)` and proceed with that. + To generate the `$NAME.categories` file, run `python -m torchvision.prototype.datasets.generate_category_files $NAME`. ### What if a resource file forms an I/O bottleneck? @@ -235,3 +308,33 @@ the performance hit becomes significant, the archives can still be preprocessed. `preprocess` parameter that can be a `Callable[[pathlib.Path], pathlib.Path]` where the input points to the file to be preprocessed and the return value should be the result of the preprocessing to load. For convenience, `preprocess` also accepts `"decompress"` and `"extract"` to handle these common scenarios. + +### How do I compute the number of samples? + +Unless the authors of the dataset published the exact numbers (even in this case we should check), there is no other way +than to iterate over the dataset and count the number of samples: + +```py +import itertools +from torchvision.prototype import datasets + + +def combinations_grid(**kwargs): + return [dict(zip(kwargs.keys(), values)) for values in itertools.product(*kwargs.values())] + + +# If you have implemented the mock data function for the dataset tests, you can simply copy-paste from there +configs = combinations_grid(split=("train", "test"), foo=("bar", "baz")) + +for config in configs: + dataset = datasets.load("my-dataset", **config) + + num_samples = 0 + for _ in dataset: + num_samples += 1 + + print(", ".join(f"{key}={value}" for key, value in config.items()), num_samples) +``` + +To speed this up, it is useful to temporarily comment out all unnecessary I/O, such as loading of images or annotation +files.